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Published February 2012 | public
Journal Article

Analysis of Search Decision Making Using Probabilistic Search Strategies

Abstract

In this paper, we propose a formulation of the spatial search problem, where a mobile searching agent seeks to locate a stationary target in a given search region or declare that the target is absent. The objective is to minimize the expected time until this search decision of target's presence (and location) or absence is made. Bayesian update expressions for the integration of observations, including false-positive and false-negative detections, are derived to facilitate both theoretical and numerical analyses of various computationally efficient (semi-)adaptive search strategies. Closed-form expressions for the search decision evolution and analytic bounds on the expected time to decision are provided under assumptions on search environment and/or sensor characteristics. Simulation studies validate the probabilistic search formulation and comparatively demonstrate the effectiveness of the proposed search strategies.

Additional Information

© 2012 IEEE. Manuscript received December 6, 2010; revised April 29, 2011; accepted September 23, 2011. Date of publication October 24, 2011; date of current version February 9, 2012. This paper was recommended for publication by Associate Editor D. Hsu and Editor D. Fox upon evaluation of the reviewers' comments.

Additional details

Created:
August 22, 2023
Modified:
October 24, 2023